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Fairness-aware Maximal Biclique Enumeration on Bipartite Graphs

Authors :
Yin, Ziqi
Zhang, Qi
Zhang, Wentao
Li, Rong-Hua
Wang, Guoren
Publication Year :
2023

Abstract

Maximal biclique enumeration is a fundamental problem in bipartite graph data analysis. Existing biclique enumeration methods mainly focus on non-attributed bipartite graphs and also ignore the \emph{fairness} of graph attributes. In this paper, we introduce the concept of fairness into the biclique model for the first time and study the problem of fairness-aware biclique enumeration. Specifically, we propose two fairness-aware biclique models, called \nonesidebc~and \ntwosidebc~respectively. To efficiently enumerate all {\nonesidebc}s, we first present two non-trivial pruning techniques, called fair $\alpha$-$\beta$ core pruning and colorful fair $\alpha$-$\beta$ core pruning, to reduce the graph size without losing accuracy. Then, we develop a branch and bound algorithm, called \onesideFBCEM, to enumerate all single-side fair bicliques on the reduced bipartite graph. To further improve the efficiency, we propose an efficient branch and bound algorithm with a carefully-designed combinatorial enumeration technique. Note that all of our techniques can also be extended to enumerate all bi-side fair bicliques. We also extend the two fairness-aware biclique models by constraining the ratio of the number of vertices of each attribute to the total number of vertices and present corresponding enumeration algorithms. Extensive experimental results on five large real-world datasets demonstrate our methods' efficiency, effectiveness, and scalability.<br />Comment: Accepte by ICDE 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2303.03705
Document Type :
Working Paper